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Books

First Workshop on Recommender Systems in Fashion, 2019: Held in Copenhagen (Denmark)

Second Workshop on Recommender Systems in Fashion, 2020: Held in Online (Worldwide)

Third Workshop on Recommender Systems in Fashion, 2020: Held in Online (Worldwide)

Book Chapters

  • Chapter in the Third Edition of the Recommender Systems Handbook, by Shatha Jaradat, Nima Dokoohaki, Humberto Jesús Corona Pampín, Reza Shirvany Pages 1015-1055

Conference & Journal Papers

  • An Exploration of Mood Classification in the Million Songs Dataset H Corona, MP O'Mahony 12th Sound and Music Computing Conference, Maynooth University, Ireland, 2015

  • Evaluating the Relative Performance of Collaborative Filtering Recommender Systems HJ Corona Pampın, H Jerbi, MP O’Mahony Journal of Universal Computer Science 21 (13), 1849-1868, 2015

  • Session-based complementary fashion recommendations JC Wu, JAS Rodríguez, HJC Pampín arXiv preprint arXiv:1908.08327, 2019

  • Evaluating the Relative Performance of Neighbourhood-Based Recommender Systems H Corona, H Jerbi, MP O’Mahony 3rd Spanish Conference on Information Retrieval, 2014

  • A Time-Aware Exploration of RecSys15 Challenge Dataset HJ Corona Pampín, A Peleteiro Proceedings of the 4th Spanish Conference on Information Retrieval,2016

  • A Mood-based Genre Classification of Television Content HJ Corona Pampín, MP O'Mahony ACM Workshop on Recommendation Systems for Television and Online Video, 2014

  • A Mood-based Genre Classification of Television Content HJC Pampín, MP O’Mahony CoRR

This is a list of all the scientific papers I published. For some of them, I includethe data and the code for only for reproducibility purposes. For more information, visit my google scholar profile

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All the scientific papers I published, including the data and the code

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  • MATLAB 48.2%
  • Jupyter Notebook 41.2%
  • Java 10.3%
  • Python 0.3%